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首页> 外文期刊>Journal of Beijing Institute of Technology >Genetic Algorithm Based Combinatorial Auction Method for Multi-Robot Task Allocation
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Genetic Algorithm Based Combinatorial Auction Method for Multi-Robot Task Allocation

机译:基于遗传算法的多机器人任务组合拍卖方法

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摘要

An improved genetic algorithm is proposed to solve the problem of bad real-time performance or inability to get a global optimal/better solution when applying single-item auction (SIA) method or combinatorial auction method to multi-robot task allocation. The genetic algorithm based combinatorial auction (GACA) method which combines the basic-genetic algorithm with a new concept of ringed chromosome is used to solve the winner determination problem (WDP) of combinatorial auction. The simulation experiments are conducted in OpenSim, a multi-robot simulator. The results show that GACA can get a satisfying solution in a reasonable shot time, and compared with SIA or parthenogenesis algorithm combinatorial auction (PGACA) method, it is the simplest and has higher search efficiency, also, GACA can get a global better/optimal solution and satisfy the high real-time requirement of multi-robot task allocation.
机译:提出了一种改进的遗传算法来解决将单项拍卖(SIA)方法或组合拍卖方法应用于多机器人任务分配时实时性能差或无法获得全局最优/更好的解决方案的问题。基于遗传算法的组合拍卖(GACA)方法将基本遗传算法与环形染色体的新概念相结合,用于解决组合拍卖的赢家确定问题(WDP)。仿真实验在多机器人模拟器OpenSim中进行。结果表明,GACA可以在合理的拍摄时间内得到满意的解决方案,并且与SIA或单性生成算法组合拍卖(PGACA)方法相比,它最简单且具有更高的搜索效率,而且GACA可以使全局更好/最优解决方案并满足多机器人任务分配的高实时性要求。

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